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Data-adaptive detection of transient deformation in geodetic networks

机译:大地测量网络中瞬态变形的数据自适应检测

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The recent development of dense and continuously operating Global Navigation Satellite System (GNSS) networks worldwide has led to a significant increase in geodetic data sets that sometimes capture transient-deformation signals. It is challenging, however, to extract such transients ofgeophysical origin from the background noise inherent to GNSS time series and, even more so, to separate them from other signals, such as seasonal redistributions of geophysical fluid mass loads. In addition, because of the very large number of continuously recording GNSS stations now available, it has becomeimpossible tosystematically inspect each time series and visually compare them at all neighboring sites. Here we show that Multichannel Singular Spectrum Analysis (M-SSA), a method derived from the analysis of dynamical systems, can be used to extract transient deformations, seasonal oscillations, and background noise present in GNSS time series. M-SSA is a multivariate, nonparametric, statistical method that simultaneously exploits the spatial and temporal correlations of geophysical fields. The method allows for the extraction of common modes of variability, such as trends with nonconstant slopes and oscillations shared across time series, without a priori hypotheses about their spatiotemporal structure or their noise characteristics. We illustrate this method using synthetic examples and show applications to actual GPS data from Alaska to detect seasonal signals and microdeformation at the Akutan active volcano. The geophysically coherent spatiotemporal patterns of uplift and subsidence thus detected are compared to the results of an idealized model of such processes in the presence of a magma chamber source.
机译:全球密集且连续运行的全球导航卫星系统(GNSS)网络的最新发展导致大地测量数据集的显着增加,这些数据集有时捕获瞬态变形信号。然而,从GNSS时间序列固有的背景噪声中提取这种地球物理起源的瞬变,甚至将它们与其他信号(例如地球物理流体质量负荷的季节性重新分布)分开,具有挑战性。另外,由于现在有大量连续记录的GNSS站,因此不可能系统地检查每个时间序列并在所有相邻站点进行视觉比较。在这里,我们显示了多通道奇异频谱分析(M-SSA),一种从动力学系统分析中得出的方法,可以用于提取GNSS时间序列中存在的瞬态变形,季节性振荡和背景噪声。 M-SSA是一种多变量,非参数统计方法,可同时利用地球物理场的时空相关性。该方法可以提取常见的变化模式,例如具有非恒定斜率的趋势和在时间序列上共享的振荡,而无需事先假设其时空结构或噪声特征。我们使用合成示例说明了该方法,并展示了其对来自阿拉斯加的实际GPS数据的应用,以检测季节性信号和阿库坦活火山的微变形。在存在岩浆腔源的情况下,将如此探测到的地球物理上一致的时空时空分布与这种过程的理想化模型的结果进行了比较。

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